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All Day DevOps 2017 is coming!

All Day DevOps 2017 online conference is coming on October 24th 2017. Last year I had a chance to attend it and I can confirm that the overall quality of the talks was excellent. Looking at this year's agenda it seems more promising than 2016's. I heartily recommend attending it to everyone interested in DevOps matters.

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